Yk. Park et al., MODELING ACOUSTIC TRANSITIONS IN SPEECH BY MODIFIED HIDDEN MARKOV-MODELS WITH STATE DURATION AND STATE DURATION-DEPENDENT OBSERVATION PROBABILITIES, IEEE transactions on speech and audio processing, 4(5), 1996, pp. 389-392
We propose a modified hidden Markov model (MHMM) that incorporates non
parametric state duration and state duration-dependent observation pro
babilities to reflect state transitions and to have accurate temporal
structures in the HMM. In addition, to cope with the problem that resu
lts from the use of insufficient amount of training data, we propose t
o use the modified continuous density hidden Markov model (MCDHMM) wit
h a different number of mixtures for the probabilities of state durati
on-independent and state duration-dependent observation. We show that
this proposed method yields improvement in recognition accuracy in com
parison with the conventional CDHMM.